| Literature DB >> 26925249 |
Ravindra Mehta1, Azra Bihorac2, Nicholas M Selby3, Hude Quan4, Stuart L Goldstein5, John A Kellum6, Claudio Ronco7, Sean M Bagshaw8.
Abstract
BACKGROUND: Acute kidney injury (AKI) is independently associated with the development of chronic kidney disease, endstage kidney disease and increased all-cause and cardiovascular-specific mortality. The severity of the renal insult and the development of multiple AKI episodes increase the risk of occurrence of these outcomes. Despite these long-term effects, only a minority of patients receive nephrologist follow up after an episode of AKI; those that do may have improved outcomes. Furthermore, relatively simple quality improvement strategies have the potential to change this status quo.Entities:
Keywords: Acute kidney injury; Big Data; Blue Button Initiative; Chronic kidney disease; Electronic health records; Interoperability; Longitudinal follow-up; Minimal data set
Year: 2016 PMID: 26925249 PMCID: PMC4768419 DOI: 10.1186/s40697-016-0102-0
Source DB: PubMed Journal: Can J Kidney Health Dis ISSN: 2054-3581
Glossary of terms
| Variable | Definition | Comments |
|---|---|---|
| Electronic Health Record (EHR) | The Electronic Health Record is a longitudinal electronic record of patient health information generated by one or more encounters in any care delivery setting. Included in this information are patient demographics, progress notes, problems, medications, vital signs, past medical history, immunizations, laboratory data and radiology reports. The EHR has the ability to generate a complete record of a clinical patient encounter, as well as supporting other care-related activities directly or indirectly via interface, including evidence-based decision support, quality management and outcomes reporting [ | EHR serve as one source of data from which pertinent health information can be obtained. However, EHR are not ubiquitous and may result in incomplete data particularly as patients transition from one location to another. |
| Acute Kidney Injury (AKI) | Evidence of an acute decline in kidney function characterized by an elevation in serum creatinine or reduction in urine output over a short interval of 48 h to 7 days [ | The time of diagnosis, maximum stage reached, clinical features (oliguric or not) and should be recorded. If ancillary criteria are used e.g. decline in creatinine these should be identified. |
| AKI Episode | A discrete time period recognized with a starting point when diagnostic criteria are present and ending when there is evidence of improvement in renal function to meet criteria of recovery. Repeat episodes should be identified by evidence of a new decline in renal function following an improvement in renal function | It is often difficult to determine exact start and end points of an AKI episode when creatinine and urine output are fluctuating. Criteria for classifying discrete episodes of AKI need to be developed. |
| AKI Follow-up | Assessment of clinical and lab data at specific intervals following an AKI episode. Follow up should determine the level of general heath, level of renal function, consequences of the AKI on target organs and functional status and assess modifiable factors influencing outcomes. Specific interventions to improve recovery should be considered at each follow up visit. | Data recording should distinguish single from multiple episodes that may be contiguous or separated in time. Analysis of the trajectory of serum creatinine changes could be used to track individual episodes. An electronic “tag” should be placed in patients record identifying the index episode to enable them being recognized as high risk for subsequent events. |
| Minimal Data set | Set of variables that specifies the common data elements (CDE) that would be extracted at different time points after an episode of AKI (and then could be supplemented by additional data items). | Core data elements should include: when the AKI episode occurred, location, etiology, associated events, key features in management, course, consequences and outcomes). The frequency of recording would be defined by best practices to allow timely interventions at patient centric levels. This minimum dataset would be the basis for both patient centric and population level tracking across geographic areas or jurisdictions. |
| Unique patient identifiers (UPI) | A system that assigns individuals a unique number (the healthcare version of a Social Security Number) as a tool for patient identification across the different health care systems. | Not available in all countries and settings. |
| Blue Button Initiative | A system allowing patients and consumers access to their health records electronically through the “Blue Button” | Blue Button originated at the Veteran’s Administration as a symbol on its patient portal that beneficiaries could click to securely download their own health record electronically. Since then the Blue Button has spread beyond VA to other to more than 450 government and the private sector organizations making personal health data available to Americans. |
| SNOMED | The Systematized Nomenclature of Medicine is a systematic, collection of medical terms amenable for computer processing. It provides codes, terms, synonyms and definitions which cover anatomy, diseases, findings, procedures, microorganisms, substances, etc. | |
| Interoperability | The ability of a system to exchange electronic health information with and use electronic health information from other systems without special effort on the part of the user. Interoperability is made possible by the implementation of standards. |
|
| Renal functional recovery from AKI | Evidence of improvement in renal function to a level close to the reference point. There are variable definitions of complete and partial recovery in different studies [ | Determining recovery is often difficult as there may be inadequate follow up of clinical and lab data as patients may be seen in different locations under different providers and systems. This is much easier when patients are cared for in a single health care system with shared data (e.g Veterans Affairs medical centres in the US or UK NHS) |
| Mortality | Documentation of death, cause, contributing factors and time to death from onset of AKI. | This endpoint should be measured at several time points from AKI diagnosis but at a minimum at hospital discharge and at 90 days post AKI. |
| Chronic kidney Disease (CKD) Status | State of kidney health prior to development of AKI based on historical data. | Consistency in determining and recording CKD stage is necessary. We recommend using consensus staging criteria and validated equation to calculate estimated glomerular filtration rate. |
Possible outcome measures for use in tracking episodes of AKI
| Entity resolution | Initial encounter | Subsequent encounters | |||
|---|---|---|---|---|---|
| Kidney Health | Overall health | Kidney Health | Overall health | ||
| Population | Name | AKI detection results/tag. | ICD codes | All subsequent AKI episodes, stages and timing. | Re-hospitalization. |
| Patient | Name | AKI detection results/tag | Setting of AKI, exposures and co-existing illness. | eGFR. | Comorbidities. |
| Management | Name | Treatment given for AKI. | Medications (including those stopped/temporarily suspended). | CKD care. | Functional recovery. |
| Research | Biomarkers. | Specific therapies. | Therapies to facilitate recovery. | Therapies to improve systemic outcomes. | |
AKI acute kidney injury, ICD International Classification of Diseases, eGFR estimated glomerular filtration rate, CKD chronic kidney disease, RRT renal replacement therapy, MAKE major adverse kidney events, MARCE major adverse renal and cardiovascular events
Fig. 1Diagram of data collection opportunities across the acute kidney injury patient pathway. Reproduced with permission from ADQI
Types of data that could be utilised to track AKI (adapted from Deeny et al [38])
| Data type | Definition | Characteristics | Examples |
|---|---|---|---|
| Administrative data | Data collected as part of the routine administration of healthcare, for example reimbursement and contracting. | Records of attendances, procedures and diagnoses entered manually into the administration system for a hospital or other healthcare organization and then collated at regional or national level. Little or no patient or clinician review; no data on severity of illness. | Hospital episode statistics (England): Clinical coders review patients’ notes, and assign and input codes following discharge. These codes are used within a grouper algorithm to calculate the payment owed to the care provider. Veterans administration databases: Data from health care episodes within the VA system for both in-patient and out-patient treatment. |
| Clinical data | Data collected by healthcare workers to provide diagnosis and treatment as part of clinical care. These data might arise from the patient (for example, reports of symptoms) but are recorded by the clinician. | Electronic medical record of patient diagnoses and treatment. Results of laboratory tests. Compared with administrative data, less standardized in terms of the codes used and less likely to be collated at regional and national levels. | Electronic medical record: More than 90 % of primary care doctors reported using the Electronic Medical Record (EHR) in Australia, the Netherlands, New Zealand, Norway and the UK in 2012. In the US, the American Recovery and Reinvestment Act and the Health Information Technology for Economic and Clinical Health Act have driven nationwide uptake and usage of electronic health records (EHR). |
| Patient generated data | Data requested by the clinician or healthcare system and reported directly by the patient to monitor patient health, as well as data that the individual decides to record autonomously without the direct involvement of a health care practitioner. | Data collected by the patient on clinical metrics (eg, blood pressure), symptoms or patient reported outcomes; also symptoms and treatment recorded by the patient outside the ‘traditional’ healthcare system structures. | Examples include telehealth (e.g. for heart failure patients), UK (Renal) PatientView that allows patients to upload blood pressure, weight and glucose measurements ( |
| Machine generated data | Data automatically generated by a computer process, sensor etc. to monitor staff or patient behavior passively. | Record of individual behavior as generated by interaction with machines. The nature of the data recorded is determined by the technology used and substantial processing is typically required to interpret it | Telecare sensors: Telecare aims for remote, passive and automatic monitoring of behavior within the home, for example for frail older people. |